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PersEmoN: A Deep Network for Joint Analysis of Apparent Personality, Emotion and Their Relationship (1811.08657v2)

Published 21 Nov 2018 in cs.CV

Abstract: Apparent personality and emotion analysis are both central to affective computing. Existing works solve them individually. In this paper we investigate if such high-level affect traits and their relationship can be jointly learned from face images in the wild. To this end, we introduce PersEmoN, an end-to-end trainable and deep Siamese-like network. It consists of two convolutional network branches, one for emotion and the other for apparent personality. Both networks share their bottom feature extraction module and are optimized within a multi-task learning framework. Emotion and personality networks are dedicated to their own annotated dataset. Furthermore, an adversarial-like loss function is employed to promote representation coherence among heterogeneous dataset sources. Based on this, we also explore the emotion-to-apparent-personality relationship. Extensive experiments demonstrate the effectiveness of PersEmoN.

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Authors (3)
  1. Le Zhang (180 papers)
  2. Songyou Peng (41 papers)
  3. Stefan Winkler (52 papers)
Citations (36)

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